Forecasting the rheological state properties of self-compacting concrete mixes using the response surface methodology technique for sustainable structural concreting

It is structurally pertinent to understudy the important roles the self-compacting concrete (SCC) yield stress and plastic viscosity play in maintaining the rheological state of the concrete to flow. It is also important to understand that different concrete mixes with varying proportions of fine to coarse aggregate ratio and their nominal sizes produce different and corresponding flow- and fill-abilities, which are functions of the yield stress/plastic viscosity state conditions of the studied concrete. These factors have necessitated the development of regression models, which propose optimal rheological state behavior of SCC to ensure a more sustainable concreting. In this research paper on forecasting the rheological state properties of self-compacting concrete (SCC) mixes by using the response surface methodology (RSM) technique, the influence of nominal sizes of the coarse aggregate has been studied in the concrete mixes, which produced experimental mix entries. A total of eighty-four (84) concrete mixes were collected, sorted and split into training and validation sets to model the plastic viscosity and the yield stress of the SCC. In the field applications, the influence of the sampling sizes on the rheological properties of the concrete cannot be overstretched due to the importance of flow consistency in SCC in order to achieve effective workability. The RSM is a symbolic regression analysis which has proven to exercise the capacity to propose highly performable engineering relationships. At the end of the model exercise, it was found that the RSM proposed a closed-form parametric relationship between the outputs (plastic viscosity and yield stress) and the studied independent variables (the concrete components). This expression can be applied in the design and production of SCC with performance accuracies of above 95% and 90%, respectively. Also, the RSM produced graphical prediction of the plastic viscosity and yield stress at the optimized state conditions with respect to the measured variables, which could be useful in monitoring the performance of the concrete in practice and its overtime assessment. Generally, the production of SCC for field applications are justified by the components in this study and experimental entries beyond which the parametric relations and their accuracies are to be reverified.


Introduction
Self-compacting concrete (SCC) is a specialized type of concrete that flows and settles under its own weight without the need for mechanical vibration, making it particularly useful in applications where traditional concrete placement methods are impractical [1][2][3][4][5][6][7][8][9][10][11][12][13][14][15].Rheological properties, which include yield stress, plastic viscosity, flowability, stability, etc., play a crucial role in determining the flow behavior and stability of SCC mixes [14][15][16][17].Flowability is one of the most important rheological properties of SCC.It refers to the ability of the concrete mix to flow and spread into formwork under its own weight without segregation or excessive bleeding [14].Flowability is typically assessed using slump flow tests, where the diameter of the concrete spread is measured after it has been allowed to flow freely [16].Viscosity measures the resistance of the SCC mix to flow.SCC mixes typically exhibit lower viscosity compared to conventional concrete due to the presence of high-range water-reducing admixtures (HRWRA) and fines content [17].Lower viscosity facilitates better flowability and allows the mix to flow easily through congested reinforcement [15].Yield stress is the minimum stress required to initiate flow in a material.In SCC, yield stress is an important parameter that determines its ability to flow under its own weight [14].SCC mixes with higher yield stress may require higher pumping pressures during placement.However, excessively low yield stress may lead to segregation and instability of the mix.Thixotropy refers to the property of a material to become less viscous over time when subjected to shear stress and to regain its original viscosity when the stress is removed [17].Thixotropic behavior is desirable in SCC as it allows the mix to flow easily during placement but maintain stability and prevent segregation once placed.Segregation resistance is a measure of the ability of SCC mixes to maintain uniform distribution of aggregates, fines, and admixtures during handling, transportation, and placement [16].Proper selection of materials and proportions, as well as appropriate mix design, are essential to ensure adequate segregation resistance.Stability refers to the ability of the SCC mix to maintain its homogeneous composition and prevent segregation or bleeding during handling and placement [15].Stable mixes exhibit uniform flow without separation of coarse aggregates or settlement of fines.Rheological properties can also be affected by temperature variations.Changes in temperature can influence the viscosity and flow behavior of SCC mixes, impacting their performance during placement and curing [15].Understanding and controlling these rheological properties are crucial for the successful design and application of self-compacting concrete mixes, ensuring optimal flow, stability, and performance in various construction scenarios [16].Hence, the application of a symbolic regression-based machine learning technique such as the response surface methodology (RSM) becomes relevant to propose optimized models that can enhance the sustainable production and handling of SCC.
Response surface methodology (RSM) is a comprehensive set of mathematical and statistical approaches that include fitting a polynomial equation to trial data.The primary purpose of RSM is to accurately explain the performance of a given data set, with the ultimate goal of producing statistical predictions.This approach is particularly applicable in situations when the outcome or outcomes of attention are affected by multiple variables.The aim is to concurrently improve the levels of these variables to achieve optimal system performance [1].Before implementing the RSM approach, it is imperative to carefully select an appropriate investigational design that will effectively delineate the specific tests to be conducted inside the designated investigational region under investigation.Several experimental matrices have been developed for this specific purpose.First-order models, such as factorial designs, are suitable experimental designs to employ in cases where the dataset lacks curvature.To model a response function for experimental data that cannot be well represented by linear functions in Eq 1, it is recommended to employ investigational designs that account for quadratic response surfaces.Examples of such designs include three-level factorial, central composite, Doehlert designs, and Box-Behnken.
Statistically, RSM solves: Let Y be a random variable with an unknown mean function that depends on the d-dimensional factor vector x.Additionally, the variance of Y, which is caused by experimental error, is a constant unknown value.The development of the response surface approach can be attributed to Box and his colleagues throughout the 1950s.The phrase in question has its origins in the graphical representation that arises from evaluating the fitness of a scientific model.Its usage has been prevalent in the literature on chemometrics.The RSM methodology encompasses a collection of statistical and mathematical methodologies that rely on the fitting of experimental models to investigational data acquired through experimental design.In pursuit of this goal, the utilization of linear or square polynomial functions is considered.illustrates the integration of these components in the context of RSM.The aforementioned confluence of techniques necessitates that researchers exercise caution and attentiveness throughout all three stages of Response Surface Methodology (RSM).Without exercising due caution, this practice is likely to encounter failure and may not yield the anticipated or intended outcomes.
Response Surface Analysis (RSA) allows researchers to examine intricate psychological phenomena, such as determining whether the alignment between two psychological categories is linked to elevated values in an outcome variable.The utilization of RSA in the field of personality and social psychology has been on the rise.However, certain oversimplifications and misconceptions have raised concerns over the validity of the findings reported in published literature.In this paper, we elucidate the foundational mathematical principles necessary for comprehending RSA outcomes, and we furnish a comprehensive guide for accurately discerning congruence effects.Humberg et al. [2] elucidated two prevailing mistakes by demonstrating that the evaluation of a solitary RSA parameter is insufficient in determining the presence of a congruence effect.Furthermore, we establish that in cases where a congruence effect is observed, RSA is incapable of discerning the relative superiority or inferiority of an interpreter mismatch in one direction compared to a mismatch in the (underestimation)opposite direction.It is anticipated that this involvement will augment the strength and robustness of experimental research that employs this potent methodology.The approximation of response surfaces is commonly achieved through the utilization of a second-order regression model, as it has been observed that the higher-order effects tend to be of negligible significance [3].The equation representing a second-order regression model, commonly referred to as the full quadratic model, for a given number of factors, denoted as, k, can be expressed as Eqs 2 & 3.In addition to the widely utilized central composite design (CCD), the subsequent sections will also present a demonstration of the Box-Behnken Design [4,5].
1st order model; 2nd order model; Where; Ɛ = Error and β 0 , β 1 , β 2 are the constants.The formula is put into matrices as follows; To calculate the formula factors the following formula is used: Response Surface Methodology (RSM) is an influential experimental design procedure utilized for the analysis and modeling of issues where multiple variables have an impact on a response of interest [6].While the utilization of this approach has been extensively employed to optimize experimental processes, its application within the concrete industry has been relatively restricted.In their study, Khayat et al. [7] employed a composite central response surface methodology to evaluate the impact of various parameters of self-consolidating concrete (SCC) mixtures on multiple responses, including filling capacity, V-funnel flow time, and slump flow.In their study, Simon et al. [8] developed the Response Surface Methodology to optimize the composition of high-performance concrete mixtures.The objective was to achieve the highest possible compressive strength while concurrently minimizing chloride permeability and cost.Bayramov and colleagues [9] proposed an analytical model utilizing response surface methodology to enhance fracture parameters in reinforced steel fiber concretes, aiming to enhance their ductility.Nooraziah and Tiagrajah [10] focused on determining the most effective response surface method for the modeling of three influences and three levels of parameters in the field of machining.The Box-Behnken Design has been determined to exhibit greater efficacy compared to both the Full Factorial Design and the Central Composite Design.Additionally, the utilization of a second-order regression model is more beneficial.Al-Sabaeei et al. [11] analyzed the rheological characteristics of bioasphalt binders containing crude palm oil under short-term aging and unaged conditions using the response surface method (RSM).The results indicate that test temperature and CPO concentration have a substantial impact on the phase angle and complex modulus of bio-asphalt binders.With 5% CPO at 64˚C, the phase angle and optimal complex modulus can be attained.
Self-compacting concrete (SCC) is extensively utilized in the building sector owing to its favorable mechanical characteristics, notable fluidity, and capacity to effortlessly traverse and occupy the voids amidst reinforcing bars without the need for external shocks [12,13].The attainment of self-compatibility and resistance to segregation can be accomplished through the utilization of superplasticizers, the reduction of the coarse aggregate content, and the decrease in the water-cement ratio [12].The self-consolidating concrete flowability exhibits a correlation with key rheological properties such as yield stress, plastic viscosity, and the results obtained from empirical test processes.Concrete workability can be characterized as its capacity to effectively occupy its formwork while exhibiting adequate strength in its ultimate cured state [12].To achieve optimal workability, it is imperative to strike a harmonious equilibrium between the mechanical characteristics of concrete and its fluid nature [13].Hence, the establishment of precise methodologies for forecasting plastic viscosity and yield stress is of utmost significance, as these attributes play a pivotal role in determining concrete workability.The rheological characteristics of recently mixed concrete can be examined by a range of testing methods, including the V-funnel tests, L-box, and slump-flow [14].The analytical equation derived by Schowalter and Christensen [15] established a relationship between the fresh concrete slump and its yield stress.The study conducted by Pashias et al. [16] examined the correlation between the slump height and the yield stress in materials that have undergone flocculation.A proposed equation was put forth to approximate the relationship between yield stress and slump height.In their study, Le et al. [17] showed that the selfconsolidating concrete yield stress may be estimated by conceptualizing concrete as a suspension of aggregates within a cement paste.The predictive relationship between yield stress and several factors, such as additional paste layer thickness, volume fraction aggregates, and separation, has been demonstrated to depend on the principles of excess paste theory and percolation theory.
Neophytou et al. [18] focused on determining self-compacting concrete mixtures through empirical tests.It aims to correlate rheological parameters like plastic viscosity and yield stress with slump flow measurements.The study found that the final non-dimensional spread is linearly connected to the yield of non-dimensional stress, and the non-dimensional viscosity is related to the stopping time and final spread of the slump flow, suggesting an exponential decay with viscosity.Asri et al. [19] employed artificial neural networks to develop a model for forecasting the self-compacting concrete compressive strength at 28 days.The model was based on rheological data obtained from experimental tests, including the H 2 /H 1 ratio of L-Box, slump flow diameter, and V-Funnel flow duration, as well as the values yield stress of and plastic viscosity.The results obtained from training many models demonstrate that the optimal architecture for the model with two hidden layers is 5-50-50-1, yielding a Pearson's correlation coefficient of R = 97.58%.Feys et al. [20] examined the Self-Compacting Concrete behavior during pumping, extending the standard shear rate range in laboratory rheometer experiments.The findings reveal a new region with distinct rheological properties: SCC exhibits shear thickening behavior.This paper describes the various measurement artifacts that can result in evident but not actual shear thickening behavior.In addition, it concentrates on the effect of mixture composition on the shear stress at which shear thickening begins.Furthermore, the intensity of shear thickening as a function of mixture composition is considered.
Li et al. [21] investigated the effect of constituent material parameters on the characteristics of self-compacting concrete.The response surface methodology and central composite design approach are employed to generate mixtures of coarse aggregate, cement, fly ash, sand, and superplasticizer.The findings indicate that all combinations exhibited fresh state characteristics that fit with the requirements for self-consolidating concrete (SCC).The compressive strength of the hardened characteristics varied between 35.254 and 48.174 MPa, while the modulus of elasticity ranged from 27.214 to 39.026 MPa.Benaicha et al. [22] proposed a new approach for testing SCC mixture workability.It uses concrete's plastic viscosity and a flow final profile and V-funnel's time with a Plexiglas horizontal channel.This simple, inexpensive, and useful tool on construction sites characterizes SCC rheology from flow.Nehdi and Ai-Martini [23]examined the rheology of chemical-admixed concrete, focusing on temperature, mixing time, and dosage.Results demonstrated that these factors greatly affect concrete Bingham constants.The plastic viscosity and yield stress correlation were inversely connected, suggesting a more accurate concrete mixture assessment in hot weather.Mahmoodzadeh and Chidiac [24] assessed rheological models for analyzing the flow of fresh concrete behavior and concentrate interruptions.It introduces novel models for forecasting yield stress and plastic viscosity based on mixture composition using the cell method.The models are deemed representative of fresh concrete and demonstrate excellent fit, objectivity, and precise estimations.Amin et al. [25] predicted the rheological characteristics of fresh concrete using analytical machine learning (PML) methods.The approaches used were random forest (R-F) PML and artificial neural network (ANN).With coefficients of determination (R 2 ) values of 0.96 and 0.92 for YS and PV, respectively, the R-F model outperformed the NN model.Additionally, the influence of input parameters on PV and YS predictions was investigated.Construction initiatives could save time, effort, and money as a result.
Basser et al. [26] investigated the mechanical and rheological properties of self-compacting concrete containing steel fibers and PET.It uses 30 mixing schemes and RSM optimization techniques.The results show that PET reduces rheological properties but improves mechanical properties, especially ductility.The optimal mixture is obtained with 0.23% fiber, 4% PET, 1.132% superplasticizer, and 6.47% stone powder achieving the 28-day compressive strength maximum while meeting EFNARC workability indicators.Geiker et al. [27] investigated torque and time while measuring the rheological properties of fresh concrete with a BML viscometer and self-compacting concrete.The relaxation duration may have an impact on the anticipated parameters, perhaps resulting in an overestimation of plastic viscosity and an underestimation of yield value.Huang et al. [28] investigated the effects of rosin resin airentraining agent and polycarboxylate superplasticizer on the rheological characteristics of powder-viscosity modifying admixture and self-compacting concrete.The findings indicated that whilst AE increases yield stress and plastic viscosity, SP dose significantly lowers both of these parameters.Increased air content lessens the behavior of shear thickening.Ahmad and Umar [29] investigated how the addition of glass and polyvinyl alcohol fibers altered the characteristics of the SCC.Seven distinct mixtures were made, each with a different proportion of fiber.Several different experiments were used to evaluate the fresh properties.According to the findings of the study, the incorporation of fibers resulted in a modest decrease in workability qualities but increased toughened properties, in particular for SCC compositions that contained glass fibers.
Carro-Lo ´pez et al. [30] examined the proportions and effects of fine recycled aggregates in self-compacting concrete.Results indicate that mixtures containing 50% and 100% recycled sand lose SCC characteristics after 90 minutes, whereas mixtures containing 20% recycled sand retain adequate passing and infill abilities.Karakurt and Dumango ¨z [31] examined the production of SCC using marble dust and granulated blast furnace slag.It evaluates the specimens' rheological, workability, and cemented concrete properties, as well as their durability, freeze-thaw resistance, and abrasion resistance.The late-age performances demonstrate enhancements in both the fresh and aged properties.Faez et al. [32] examined the mechanical and rheological characteristics of self-compacting concrete that incorporates Al2O3 nanoparticles and silica fume.The results indicated that using Al2O3 nanoparticles as a substitute for a portion of cement leads to a significant enhancement in compressive strength, with improvements of 47%, 88%, and 86% observed.Similarly, the inclusion of Al2O3 nanoparticles results in a notable rise in splitting tensile strength, with enhancements of 29%, 55%, and 47% recorded.Nevertheless, the utilization of aluminum nanoparticles leads to a decrease in water absorption by around 10% and 45%.The study posits that the utilization of silica fume in selfcompacting concrete may prove to be efficacious in situations when little water absorption is desired.
Wagh et al. [33] assessed the rheological and mechanical characteristics of self-compacting lightweight aggregate concrete with high strength, using metakaolin.The concrete specimens were formulated using a binder concentration of 550 kg/m3 and a water-to-binder ratio of 0.28.The use of metakaolin resulted in an enhancement of compressive strength, yield stress, and plastic viscosity.All self-compacting concretes that were tested met the SCC criteria, suggesting that metakaolin could be a promising material for enhancing the rheological and mechanical characteristics of SCCs.Huang et al. [28] investigated the influence of polycarboxylate superplasticizer and rosin resin air-entraining agent on the rheological characteristics of powder-viscosity modifying admixture and self-compacting concrete.The results of the study indicate that the administration of SP dose has a notable impact on the reduction of yield stress and plastic viscosity.Conversely, the application of AE leads to a rise in both yield stress and plastic viscosity.A higher air content has been seen to decrease the occurrence of shear thickening behavior.Liu et al. [34] examined the effects of silica fume, limestone powder, and viscosity adjusted admixtures on the rheological properties of self-compacting concrete.The results indicated that the inclusion of silica fume and viscosity-adjusted admixture leads to an increase in both yield stress and plastic viscosity.Conversely, the removal of limestone powder results in a decrease in the yield stress of the paste.The research also notes a decrease in the paste's shear thickening behavior.
Křı ´z ˇova ´and Novosad [35] studied mechanical and physical experiments of self-compacting concrete with fiber reinforcement, which offers advantages such as a high storage rate, homogenization, low water-cement ratio, and the exclusion of external vibrations.It evaluates the effects of numerous SCC formulas with steel and polypropylene fibers on concrete properties.Gołaszewski and Ponikiewski [36] examined the impact of steel fibers on the rheological and mechanical characteristics of Steel Fiber Reinforced Self-Compacting Concrete.The rheometer is utilized to determine rheological characteristics, such as yield value and plastic viscosity, through a novel methodology.This study also investigates the influence of volume percentage, fiber factor, fiber lengths, and fiber shape on the rheological properties of self-compacting fiber-reinforced concrete.The results indicated that there is no statistically significant impact of fiber length on the yield value or plastic viscosity.Messaoudi et al. [37] conducted two tests on self-compacting cement pastes using marble waste.The first entailed utilizing a Marsh cone to determine flow dough time, while the second focused on dough rheological properties such as elastic limit and plastic viscosity.Karihaloo et al. [38] presented a method for precisely estimating the rheological properties of self-compacting concrete, namely yield stress and plastic viscosity.The method employs a micromechanical procedure to estimate the plastic viscosity of the heterogeneous mixture based on the homogeneous viscous material and mixture composition, and the yield stress based on the measured t500 and flow spread.Nemoco ´n et al. [39] evaluated the rheological effect of hollow glass microspheres on cementitious materials, particularly self-compacting concrete.HGM was utilized as a partial replacement for cement, thereby reducing the consumption of chemical admixtures.The research employed direct and empirical experiments to examine mixture behavior.The results demonstrated that the incorporation of HGM improved the properties of fresh concrete while marginally decreasing the hardened properties of SCC mixtures.This investigation contributes to the development of the rheology of cement-based materials.
Ozkul and Dogan [40] investigated the rheological properties and resistance to segregation of self-compacting concrete (SCC) made with cement and fly ash as the binder.This study examines the influence of coarse aggregate concentration on flow behavior and resistance to segregation in concretes with variable binder content.Utilizing a specially designed apparatus, the experiment measures slump-flow, L-shaped box, and segregation resistance.Sathyan et al. [41] demonstrated the use of the regularized least square and random kitchen sink algorithms to predict the fresh and hardened stage properties of self-compacting concrete.The algorithm was evaluated on forty SCC mixtures with parameters including aggregate quantity, superplasticizer dosage, and water content.The model accurately predicted the properties of the SCC mixture within the experimental domain, proving the efficacy of these algorithms in the construction industry.Mohebbi et al. [42] investigated the rheological characteristics of recently prepared self-consolidating cement paste that incorporates chemical and mineral additives.This investigation employs an Artificial Neural Network model.The model utilizes a dataset consisting of 200 concrete mixtures and various input parameters, such as the water-binder ratio, mineral additives, superplasticizers, and VMAs.The outputs of the model are compared with findings from prior studies to ascertain the most favorable proportion of additives that impact the qualities of the paste.The model demonstrates that both metakaolin and silica fume exert comparable effects on the characteristics of the paste.Previously also, other research efforts have been put to model the behavior of fluidic concrete especially the rheological state conditions [43][44][45][46][47][48], which are supported by SCC design standard requirements [49], but none has shown the proficiency of the RSM and its ability to propose closed-form parametric equations to be applied in the design and production of SCC.However, in this research paper, the abilities of the RSM in this regard has been studied through experimental data collection, modeling, and analysis.Furthermore, it has been shown that none of the previous research studies focused on the effect of the nominal sizes of the coarse aggregates; below or above 20 mm but the present research work has studied among other factors the effect of aggregate nominal sizes on the investigated rheological state conditions of the SCC such as the yield stress and plastic viscosity.This is significant because different aggregate sizes and shapes influence the flow characteristics of the SCC and as such affect the handling of the SCC during structural concreting.

Methodology
A total of eighty-four (84) entries were collected from concrete mix specimens with different ratios with each record containing the following traditional constituent's data: C-Cement content (kg/m 3 ), W-Water content (kg/m 3 ), CAg-Coarse aggregates content (kg/m 3 ), FAg-Fine aggregates content (kg/m 3 ), MNS-Maximum nominal size of aggregates (mm), A-Air voids percent (%), Hs-Slump height (mm), η-Plastic viscosity (Pa.sec), and τ-Yield strength (Pa).This has been deposited in a previous published literature [24].The influence of the aggregates and their nominal sizes on the rheological micro-forces are studied in this research work in agreement with supports from the previous results [50,51].The collected records were divided into training set (64 records) and validation set (20 records).Tables 1 and 2 summarize their statistical characteristics and the Pearson correlation matrix, respectively.Finally, Figs 2 and 3 show the scatter plot distribution of the outputs and the histograms for both inputs and outputs.

SCC plastic viscosity model
The maximum model order was set to quadratic for the process factors as shown in the build information in Table 3.The selected model on the RSM model tab may be the design model or lower in order as presented in Tables 4 and 5.The fit summary calculation was ended prematurely based on options set on the Transform tab in Table 5.The highest order polynomial where the additional terms are significant and the model is not aliased was selected and the  outcome of the quadratic model which produced p-value of less than 0.05 (0.0001) is presented in Table 6.And Table 7 shows the ANOVA for Quadratic model for the plastic viscosity where the significant model has been selected.Factor coding is actual.Sum of squares is Type III-Partial.The Model F-value of 122.50 implies the model is significant as shown in Table 8.There is only a 0.01% chance that an F-value this large could occur due to noise.P-values less than 0.0500 indicate model terms  This model can be used to navigate the design space.The coefficient estimate represents the expected change in response per unit change in factor value when all remaining factors are held constant.The intercept in an orthogonal design is the overall average response of all the runs.The coefficients are adjustments around that average based on the factor settings.When the factors are orthogonal the VIFs are 1; VIFs greater than 1 indicate multi-colinearity, the higher the VIF the more severe the correlation of factors.As a rough rule, VIFs less than 10 are tolerable.The closed-form equation allows the manual application of the symbolic regression model in the production of the SCC with the optimal rheological characteristics possibly required for the efficient handling of the concrete during field construction.With a focus on the impact of the nominal sizes of the coarse aggregate on the rheological performance of the concrete, the designer can design the concrete production based on any required plastic viscosity in line with design considerations.This conception agrees with the studies on the impact of the heterogenous proportioning of the fine to coarse aggregate ratio on the behavior of the SCC [52,53] even when most other research works on this subject neglected this concept [12][13][14][15][16][17].
The equation in terms of actual factors can be used to make predictions about the response for given levels of each factor.Here, the levels should be specified in the original units for each factor.This equation should not be used to determine the relative impact of each factor because the coefficients are scaled to accommodate the units of each factor and the intercept is not at the center of the design space.The graphical depiction of the optimization phases of the plastic viscosity has been presented in Figs 4-13.These show the color   point optimization, and Lambda values between 0.22 and 0.76, from where the best optimized Lambda was selected as 0.5 based on the Box-Cox plot transform.Also, the color points optimization for the actual, predicted and residual values and the desirability optimization and 3D surface plots and the color points contour depictions are presented.These along with the parametric closed-form equation for the plastic viscosity are presented for design and field applications by deploying the optimized values of the variables for the plastic viscosity of the studied self-compacting concrete.Table 10 shows the constraints of the  optimized values.Figs 14-18 shows the optimized color points contour, desirability and 3D surface plots for the plastic viscosity determination.

SCC yield stress model
The maximum model order was set to quadratic for process factors.The selected model on the Model tab may be the design model or lower in order.The fit summary calculation was ended   held constant.The intercept in an orthogonal design is the overall average response of all the runs.The coefficients are adjustments around that average based on the factor settings.When the factors are orthogonal the VIFs are 1; VIFs greater than 1 indicate multi-colinearity, the higher the VIF the more severe the correlation of factors.As a rough rule, VIFs less than 10 are tolerable.The closed-form equation allows the manual application of the symbolic regression model in the production of the SCC with the optimal rheological characteristics e.g., yield stress possibly needed for the efficient handling of the mixed concrete during field construction.With a focus on the impact of the nominal sizes of the coarse aggregate on the rheological performance of the concrete, the designer can design the concrete production based on any required yield stress in line with design considerations.This conception agrees with the studies on the impact of the heterogenous proportioning of the fine to coarse aggregate ratio on the behavior of the SCC [52,53] even though most other research works on this subject neglected this concept [12][13][14][15][16][17].
Yield Stress ¼ À 0:008068C 2 À 0:102683W 2 À 0:000073CAg 2 À 0:001216FAg 2 The equation in terms of actual factors can be used to make predictions about the response for given levels of each factor.Here, the levels should be specified in the original units for each factor.This equation should not be used to determine the relative impact of each factor because the coefficients are scaled to accommodate the units of each factor and the intercept is not at the center of the design space.Also, the graphical depiction of the optimization phases of the yield stress has been presented in Figs 19-27.These show the color point optimization, and Lambda values between 0.22 and 0.76, from where the best optimized Lambda was selected as 0.5 based on the Box-Cox plot transform.Also, the color points optimization for the actual, predicted and residual values and the desirability optimization and 3D surface plots and the color points contour depictions are presented.These along with the parametric closed-form equation for the plastic viscosity are presented for design and field applications by deploying the optimized values of the variables for the plastic viscosity of the studied self-compacting concrete.Tables 17 and 18 show the constraints of the optimized values.shows the optimized color points contour, desirability and 3D surface plots for the plastic viscosity determination.

Conclusions
Forecasting the rheological state properties of self-compacting concrete (SCC) mixes by using the response surface methodology (RSM) technique has been research by applying data collection methodology.A total of eighty-four (84) concrete mixes were collected, sorted and split   • The RSM proposed a closed-form parametric relationship between the plastic viscosity and the studied independent variables, which is applied in design and production of SCC with a performance accuracy of • Also, the RSM proposed a closed-form parametric relationship between the concrete yield stress and the studied independent variables (the concrete components), which is applied in design and production of SCC with a performance accuracy of • The RSM produced graphical prediction of the plastic viscosity and yield stress at the optimized stated condition with respect to the measured variables, which could be useful in monitoring the performance of the concrete in practice and overtime assessment.
• Overall, the production of SCC for field application are justified by the components in this study and experimental entries beyond which the equations and their accuracy are to be reverified.

Table 3 . RSM build information.
https://doi.org/10.1371/journal.pone.0302202.t003aresignificant.In this case CG, DG, EF, FG, G 2 are significant model terms as presented in Table9.Values greater than 0.1000 indicate the model terms are not significant.If there are many insignificant model terms (not counting those required to support hierarchy), model reduction may improve your model.The predicted R 2 of 0.9509 is in reasonable agreement with the adjusted R 2 of 0.9809; i.e. the difference is less than 0.2.Adeq precision measures the signal to noise ratio.A ratio greater than 4 is desirable.Your ratio of 47.597 indicates an adequate signal.